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A Neural Reordering Model for Phrase-based Translation

机译:基于短语的翻译的神经重排模型

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While lexicalized reordering models have been widely used in phrase-based translation systems, they suffer from three drawbacks: context insensitivity, ambiguity, and sparsity. We propose a neural reordering model that conditions reordering probabilities on the words of both the current and previous phrase pairs. Including the words of previous phrase pairs significantly improves context sensitivity and reduces reordering ambiguity. To alleviate the data sparsity problem, we build one classifier for all phrase pairs, which are represented as continuous space vectors. Experiments on the NIST Chinese-English datasets show that our neural reordering model achieves significant improvements over state-of-the-art lexicalized reordering models.
机译:虽然词法化的重新排序模型已广泛用于基于短语的翻译系统中,但它们具有三个缺点:上下文不敏感,歧义性和稀疏性。我们提出了一种神经重排模型,该模型对当前短语对和先前短语对的词进行重新排序的概率为条件。包括先前短语对的单词可以显着提高上下文敏感性,并减少重新排序的歧义。为了缓解数据稀疏性问题,我们为所有短语对构建了一个分类器,将其表示为连续的空间矢量。在NIST汉英数据集上进行的实验表明,我们的神经重排模型比最新的词汇化重排模型有了显着改进。

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